| Literature DB >> 24882911 |
Michael J Hallock1, John E Stone2, Elijah Roberts3, Corey Fry4, Zaida Luthey-Schulten4.
Abstract
Simulation of in vivo cellular processes with the reaction-diffusion master equation (RDME) is a computationally expensive task. Our previous software enabled simulation of inhomogeneous biochemical systems for small bacteria over long time scales using the MPD-RDME method on a single GPU. Simulations of larger eukaryotic systems exceed the on-board memory capacity of individual GPUs, and long time simulations of modest-sized cells such as yeast are impractical on a single GPU. We present a new multi-GPU parallel implementation of the MPD-RDME method based on a spatial decomposition approach that supports dynamic load balancing for workstations containing GPUs of varying performance and memory capacity. We take advantage of high-performance features of CUDA for peer-to-peer GPU memory transfers and evaluate the performance of our algorithms on state-of-the-art GPU devices. We present parallel e ciency and performance results for simulations using multiple GPUs as system size, particle counts, and number of reactions grow. We also demonstrate multi-GPU performance in simulations of the Min protein system in E. coli. Moreover, our multi-GPU decomposition and load balancing approach can be generalized to other lattice-based problems.Entities:
Keywords: GPU Computing; Gillespie algorithm; biological cells; distributed memory parallel computing; reaction-diffusion master equation; stochastic simulation
Year: 2014 PMID: 24882911 PMCID: PMC4039640 DOI: 10.1016/j.parco.2014.03.009
Source DB: PubMed Journal: Parallel Comput ISSN: 0167-8191 Impact factor: 0.986